Dynamic weighted histogram equalization for contrast enhancement using for Cancer Progression Detection in medical imaging

Rashid Abbasi, Lixiang Xu, Z. Wang, Gohar Rehman Chughtai, Farhan Amin, B. Luo
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引用次数: 7

Abstract

Contrast-enhancement is very essential and ideal to produce a maximum contrast of many computer-vision and image-processing applications with minimum brightness error. Moreover, there is no mechanism to control the brightness error, contrast in conventional histogram equalization and mean shift problem that is usually occurs when the histogram equalization based contrast enhancement methods has used. The purpose of this research is to devise an intelligently robust framework based on the image data that is collected during several phases of Ultrasound (US) cancer image by automating the real-time image enhancement, segmentation, classification and progression the widely spreading of cancer disease at initial stages moreover, we have proposed a new methodology of contrast optimization that overcomes the mean-shift problem. The data is collected and preprocessed, while image segmentation techniques has used to partition and extract the concerned object from the enhanced image.
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利用动态加权直方图均衡增强对比度,用于医学成像中的癌症进展检测
在许多计算机视觉和图像处理应用中,对比度增强都是非常重要和理想的,它能以最小的亮度误差产生最大的对比度。此外,在传统的直方图均衡和均值偏移问题中,没有任何机制可以控制亮度误差和对比度,而在使用基于直方图均衡的对比度增强方法时,均值偏移问题通常会出现。这项研究的目的是根据在超声(US)癌症图像的几个阶段收集的图像数据,设计一个智能稳健的框架,自动进行实时图像增强、分割、分类和癌症初期广泛传播的进展。在收集和预处理数据的同时,使用图像分割技术从增强图像中分割和提取相关对象。
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